Transactional Auto Scaler

Author:

Didona Diego1,Romano Paolo1,Peluso Sebastiano2,Quaglia Francesco3

Affiliation:

1. INESC-ID/Instituto Superior Técnico, Universidade de Lisboa, Lisbon, Portugal

2. Sapienza, Universitá di Roma/Instituto Superior Técnico, Universidade de Lisboa, Rome, Italy

3. Sapienza, Universitá di Roma, Rome, Italy

Abstract

In this article, we introduce TAS (Transactional Auto Scaler), a system for automating the elastic scaling of replicated in-memory transactional data grids, such as NoSQL data stores or Distributed Transactional Memories. Applications of TAS range from online self-optimization of in-production applications to the automatic generation of QoS/cost-driven elastic scaling policies, as well as to support for what-if analysis on the scalability of transactional applications. In this article, we present the key innovation at the core of TAS, namely, a novel performance forecasting methodology that relies on the joint usage of analytical modeling and machine learning. By exploiting these two classically competing approaches in a synergic fashion, TAS achieves the best of the two worlds, namely, high extrapolation power and good accuracy, even when faced with complex workloads deployed over public cloud infrastructures. We demonstrate the accuracy and feasibility of TAS’s performance forecasting methodology via an extensive experimental study based on a fully fledged prototype implementation integrated with a popular open-source in-memory transactional data grid (Red Hat’s Infinispan) and industry-standard benchmarks generating a breadth of heterogeneous workloads.

Funder

Fundação para a Ciência e a Tecnologia

European Cooperation in Science and Technology

Seventh Framework Programme

Publisher

Association for Computing Machinery (ACM)

Subject

Software,Computer Science (miscellaneous),Control and Systems Engineering

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